Title
Enhancing precision of Markov-based recommenders using location information
Abstract
Recommender systems are a real example of human computer interaction systems that both consumer/user and seller/service-provider benefit from them. Different techniques have been published in order to improve the quality of these systems. One of the approaches is using context information such as location of users or items. Most of the location-aware recommender systems utilize users' location to improve memory-based collaborative filtering techniques. However, our proposed method is based on items' location and utilizes a Markov-based approach which can be easily applied to implicit datasets. The main application of this technique is for datasets containing location information of items. Experimental results on real dataset show that performance of our proposed method is much better than the classic CF methods.
Year
DOI
Venue
2014
10.1109/ICACCI.2014.6968579
ICACCI
Keywords
Field
DocType
markov-based recommender precision enhancement,memory-based collaborative filtering technique improvement,collaborative filtering,human computer interaction,implicit datasets,context information,system quality improvement,location-aware recommender systems,human computer interaction systems,recommender systems,markov chain,item location information,seller-service-provider benefit,consumer-user benefit,markov processes,mobile computing,user location information
Recommender system,Data mining,Collaborative filtering,Information retrieval,Computer science,Markov chain,Information filtering system
Conference
Citations 
PageRank 
References 
3
0.39
11
Authors
4
Name
Order
Citations
PageRank
Ali Abbasi130.39
Amin Javari2744.05
Mahdi Jalili331437.98
Hamid R. Rabiee433641.77